Deterministic convergence of conjugate gradient method for feedforward neural networks

Volume: 74, Issue: 14-15, Pages: 2368 - 2376
Published: Jul 1, 2011
Abstract
Conjugate gradient methods have many advantages in real numerical experiments, such as fast convergence and low memory requirements. This paper considers a class of conjugate gradient learning methods for backpropagation neural networks with three layers. We propose a new learning algorithm for almost cyclic learning of neural networks based on PRP conjugate gradient method. We then establish the deterministic convergence properties for three...
Paper Details
Title
Deterministic convergence of conjugate gradient method for feedforward neural networks
Published Date
Jul 1, 2011
Volume
74
Issue
14-15
Pages
2368 - 2376
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